Semiparametric Bernstein–Von Mises Phenomenon Via Isotonized Posterior In Wicksell’s Problem

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Publication Year
2026
Language
English
Journal title
Annals of Statistics
Issue number
1
Volume number
54
Pages (from-to)
383-407
Downloads counter
9
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Abstract

In this paper, we propose a novel Bayesian approach for nonparametric estimation in Wicksell’s problem. This has important applications in astronomy for estimating the distribution of the positions of the stars in a galaxy given projected stellar positions and in materials science to determine the 3D microstructure of a material, using its 2D cross-sections. We deviate from the classical Bayesian nonparametric approach, which would place a Dirichlet Process (DP) prior on the distribution function of the unobservables, by directly placing a DP prior on the distribution function of the observables. Our method offers computational simplicity due to the conjugacy of the posterior and allows for asymptotically efficient estimation by projecting the posterior onto the L2 subspace of increasing, right-continuous functions. Indeed, the resulting Isotonized Inverse Posterior (IIP) satisfies a Bernstein–von Mises (BvM) phenomenon with minimax asymptotic variance g0 (x)/2γ, where γ > 1/2 reflects the degree of Hölder continuity of the true cdf at x. Since the IIP gives automatic uncertainty quantification, it eliminates the need to estimate γ . Our results provide the first semiparametric Bernstein–von Mises theorem for projection-based posteriors with a DP prior in inverse problems.

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